Your browser doesn't support javascript.
loading
Show: 20 | 50 | 100
Results 1 - 5 de 5
Filter
Add more filters










Database
Language
Publication year range
1.
Methods Inf Med ; 2024 May 14.
Article in English | MEDLINE | ID: mdl-38604249

ABSTRACT

OBJECTIVE: In this study, we propose a novel framework that utilizes deep learning and attention mechanisms to predict the radiographic progression of patellofemoral osteoarthritis (PFOA) over a period of 7 years. MATERIAL AND METHODS: This study included subjects (1,832 subjects, 3,276 knees) from the baseline of the Multicenter Osteoarthritis Study (MOST). Patellofemoral joint regions of interest were identified using an automated landmark detection tool (BoneFinder) on lateral knee X-rays. An end-to-end deep learning method was developed for predicting PFOA progression based on imaging data in a five-fold cross-validation setting. To evaluate the performance of the models, a set of baselines based on known risk factors were developed and analyzed using gradient boosting machine (GBM). Risk factors included age, sex, body mass index, and Western Ontario and McMaster Universities Arthritis Index score, and the radiographic osteoarthritis stage of the tibiofemoral joint (Kellgren and Lawrence [KL] score). Finally, to increase predictive power, we trained an ensemble model using both imaging and clinical data. RESULTS: Among the individual models, the performance of our deep convolutional neural network attention model achieved the best performance with an area under the receiver operating characteristic curve (AUC) of 0.856 and average precision (AP) of 0.431, slightly outperforming the deep learning approach without attention (AUC = 0.832, AP = 0.4) and the best performing reference GBM model (AUC = 0.767, AP = 0.334). The inclusion of imaging data and clinical variables in an ensemble model allowed statistically more powerful prediction of PFOA progression (AUC = 0.865, AP = 0.447), although the clinical significance of this minor performance gain remains unknown. The spatial attention module improved the predictive performance of the backbone model, and the visual interpretation of attention maps focused on the joint space and the regions where osteophytes typically occur. CONCLUSION: This study demonstrated the potential of machine learning models to predict the progression of PFOA using imaging and clinical variables. These models could be used to identify patients who are at high risk of progression and prioritize them for new treatments. However, even though the accuracy of the models were excellent in this study using the MOST dataset, they should be still validated using external patient cohorts in the future.

2.
J Orthop Res ; 42(7): 1473-1481, 2024 Jul.
Article in English | MEDLINE | ID: mdl-38323840

ABSTRACT

In this study, we investigated the discriminative capacity of knee morphology in automatic detection of osteophytes defined by the Osteoarthritis Research Society International atlas, using X-ray and magnetic resonance imaging (MRI) data. For the X-ray analysis, we developed a deep learning (DL) based model to segment femur and tibia. In case of MRIs, we utilized previously validated segmentations of femur, tibia, corresponding cartilage tissues, and menisci. Osteophyte detection was performed using DL models in four compartments: medial femur (FM), lateral femur (FL), medial tibia (TM), and lateral tibia (TL). To analyze the confounding effects of soft tissues, we investigated their morphology in combination with bones, including bones+cartilage, bones+menisci, and all the tissues. From X-ray-based 2D morphology, the models yielded balanced accuracy of 0.73, 0.69, 0.74, and 0.74 for FM, FL, TM, TL, respectively. Using 3D bone morphology from MRI, balanced accuracy was 0.80, 0.77, 0.71, and 0.76, respectively. The performance was higher than in 2D for all the compartments except for TM, with significant improvements observed for femoral compartments. Adding menisci or cartilage morphology consistently improved balanced accuracy in TM, with the greatest improvement seen for small osteophyte. Otherwise, the models performed similarly to bones-only. Our experiments demonstrated that MRI-based models show higher detection capability than X-ray based models for identifying knee osteophytes. This study highlighted the feasibility of automated osteophyte detection from X-ray and MRI data and suggested further need for development of osteophyte assessment criteria in addition to OARSI, particularly, for early osteophytic changes.


Subject(s)
Deep Learning , Magnetic Resonance Imaging , Osteophyte , Humans , Osteophyte/diagnostic imaging , Magnetic Resonance Imaging/methods , Knee Joint/diagnostic imaging , Knee Joint/pathology , Imaging, Three-Dimensional , Femur/diagnostic imaging , Femur/pathology , Female , Male , Radiography , Aged , Middle Aged , Tibia/diagnostic imaging , Tibia/pathology , Osteoarthritis, Knee/diagnostic imaging
3.
Int J Med Inform ; 157: 104627, 2022 01.
Article in English | MEDLINE | ID: mdl-34773800

ABSTRACT

OBJECTIVE: To assess the ability of texture features for detecting radiographic patellofemoral osteoarthritis (PFOA) from knee lateral view radiographs. DESIGN: We used lateral view knee radiographs from The Multicenter Osteoarthritis Study (MOST) public use datasets (n  = 5507 knees). Patellar region-of-interest (ROI) was automatically detected using landmark detection tool (BoneFinder), and subsequently, these anatomical landmarks were used to extract three different texture ROIs. Hand-crafted features, based on Local Binary Patterns (LBP), were then extracted to describe the patellar texture. First, a machine learning model (Gradient Boosting Machine) was trained to detect radiographic PFOA from the LBP features. Furthermore, we used end-to-end trained deep convolutional neural networks (CNNs) directly on the texture patches for detecting the PFOA. The proposed classification models were eventually compared with more conventional reference models that use clinical assessments and participant characteristics such as age, sex, body mass index (BMI), the total Western Ontario and McMaster Universities Arthritis Index (WOMAC) score, and tibiofemoral Kellgren-Lawrence (KL) grade. Atlas-guided visual assessment of PFOA status by expert readers provided in the MOST public use datasets was used as a classification outcome for the models. Performance of prediction models was assessed using the area under the receiver operating characteristic curve (ROC AUC), the area under the precision-recall (PR) curve -average precision (AP)-, and Brier score in the stratified 5-fold cross validation setting. RESULTS: Of the 5507 knees, 953 (17.3%) had PFOA. AUC and AP for the strongest reference model including age, sex, BMI, WOMAC score, and tibiofemoral KL grade to predict PFOA were 0.817 and 0.487, respectively. Textural ROI classification using CNN significantly improved the prediction performance (ROC AUC = 0.889, AP = 0.714). CONCLUSION: We present the first study that analyses patellar bone texture for diagnosing PFOA. Our results demonstrates the potential of using texture features of patella to predict PFOA.


Subject(s)
Osteoarthritis, Knee , Patella , Humans , Machine Learning , Osteoarthritis, Knee/diagnostic imaging , Patella/diagnostic imaging , Radiography , X-Rays
4.
Oncotarget ; 6(30): 30035-56, 2015 Oct 06.
Article in English | MEDLINE | ID: mdl-26375443

ABSTRACT

Cancer-associated fibroblasts (CAFs) constitute an important part of the tumor microenvironment and promote invasion via paracrine functions and physical impact on the tumor. Although the importance of including CAFs into three-dimensional (3D) cell cultures has been acknowledged, computational support for quantitative live-cell measurements of complex cell cultures has been lacking. Here, we have developed a novel automated pipeline to model tumor-stroma interplay, track motility and quantify morphological changes of 3D co-cultures, in real-time live-cell settings. The platform consists of microtissues from prostate cancer cells, combined with CAFs in extracellular matrix that allows biochemical perturbation. Tracking of fibroblast dynamics revealed that CAFs guided the way for tumor cells to invade and increased the growth and invasiveness of tumor organoids. We utilized the platform to determine the efficacy of inhibitors in prostate cancer and the associated tumor microenvironment as a functional unit. Interestingly, certain inhibitors selectively disrupted tumor-CAF interactions, e.g. focal adhesion kinase (FAK) inhibitors specifically blocked tumor growth and invasion concurrently with fibroblast spreading and motility. This complex phenotype was not detected in other standard in vitro models. These results highlight the advantage of our approach, which recapitulates tumor histology and can significantly improve cancer target validation in vitro.


Subject(s)
Cell Culture Techniques/methods , Cell Tracking/methods , Time-Lapse Imaging/methods , Tumor Microenvironment , Algorithms , Cell Communication/drug effects , Cell Line , Cell Line, Tumor , Cell Movement/drug effects , Cell Proliferation/drug effects , Coculture Techniques , Collagen/metabolism , Fibroblasts/cytology , Fibroblasts/metabolism , Fibroblasts/ultrastructure , Focal Adhesion Protein-Tyrosine Kinases/antagonists & inhibitors , Focal Adhesion Protein-Tyrosine Kinases/metabolism , Granulocyte-Macrophage Colony-Stimulating Factor/pharmacology , Humans , Male , Microscopy, Confocal , Microscopy, Electron, Transmission , Models, Biological , Prostatic Neoplasms/metabolism , Prostatic Neoplasms/pathology , Prostatic Neoplasms/ultrastructure , Protein Kinase Inhibitors/pharmacology
5.
Arch Gynecol Obstet ; 288(6): 1279-83, 2013 Dec.
Article in English | MEDLINE | ID: mdl-23736829

ABSTRACT

PURPOSE: To investigate the relationship between Helicobacter pylori (Hp) positivity and the severity of symptoms of nausea and vomiting in patients diagnosed with hyperemesis gravidarum (HG). DESIGN: Prospective controlled. METHODS: Ninety patients with the diagnosis of HG below the 20th week gestation, who had no additional disease and 50 pregnant women with no complaints were enrolled in the study. According to the severity of symptoms, the patients were divided into three groups as group I, II and III (mild, moderate and severe, respectively). The Rhode's scoring system was used to determine the severity of HG symptoms. HpIgG and IgM levels were determined in the blood samples and Hp DNA positivity with PCR was investigated in the saliva. RESULTS: In accordance with the Rhode's scoring system, 15.5 % of the pregnant women had mild, 58.9 % had moderate, and 25.6 % had severe symptoms (group I, II and III, respectively). HpIgG was determined as positive in 78.6, 84.9 and 82.6 % in groups I, II and III, respectively. HpIgM positivity was determined as 26.1 % only in group III (p = 0.847). HpDNA was determined as 7.2, 3.8, and 91.3 % in group I, II, and III, respectively (p<0.01). While HpIgG was positive in 60 %, HpDNA was found to be positive in 2 % and HpIgM was found to be negative in all the pregnant women in the control group. CONCLUSION: A positive relationship between the symptoms of HG and Hp positivity was determined using PCR.


Subject(s)
Helicobacter Infections/diagnosis , Helicobacter pylori/isolation & purification , Hyperemesis Gravidarum/microbiology , Saliva/microbiology , Adult , Analysis of Variance , Antibodies, Bacterial/blood , Female , Helicobacter Infections/complications , Helicobacter pylori/genetics , Helicobacter pylori/immunology , Humans , Immunoglobulin G/blood , Polymerase Chain Reaction , Pregnancy , Pregnancy Complications, Infectious/microbiology , Prospective Studies , RNA, Viral/analysis , Severity of Illness Index , Turkey
SELECTION OF CITATIONS
SEARCH DETAIL
...